<!DOCTYPE html>
<html>
    <head>
        <title>Bronchalia: The Windy City</title>
        <script language="javascript">

/*
Programmer's note: While the general concepts of immune defense presented in this game are vaguely accurate -- to a highly simplified, "5th grade science class" level, in real life the immune system is incredibly complex and not yet fully understood. The test data even appears to indicate that you can "will" your own immune cells to change their behavior using the thoughts in your mind! [citation] That field of study is called psychoneuroimmunology. 

Anyway, here are things in the game I know are wrong, but I did for game balance/ease of programming:
In the game, antibodies simply destroy all antigens in their path. In real life, antibodies only bind up to two antigens, with a binding receptor at each upper tip of the "Y" shape. Also, antibodies do not immediately destroy the thing they bind to, but either trigger the "complement system" (bursting the cell of the thing they bind to, if it's not a virus), or just stick to their target. The antibodies stuck to the target help immobilize it by sticking targets together in clumps, and having antibodies stuck to something makes it easier for macrophages to eat it.

This work is meant to go to my comrades and allies in the public domain, created 2019-01-29. Email me at 
tee vee four three at-symbol n a u dot e d u
*/
var animation_frame = 0; //0 to 2199, +1 each frame, resets to 0 instead of reaching 2200
var mouse_clicked = 0; //debounce/indicator flag for mouse click
var mouseX = 0;
var mouseY = 0;

var reticlePresent = 1;//are reticles over diseased cells turned on?
var infoBoxPresent = 1;//is there an info box? If so, what number? 0=no box, 1=info box 1, 2=info box 2,...
var currentLevel = 0;//current level (0="click twice to begin game")

var mucusFlow = 1; //int. 1: flowing, 0:stopped
var maternalAntibodies = 0; //int. 1:present, 0:absent
var plasmaCellAntibodySpawnRate = 7;//int. 1: fastest, 100: slowest
var cellRegenerationRate = 1;//int. 1:fastest, 2199:slowest
var virusIncubationPeriod = 8;//int. 1:fastest replication, 50:slowest replication
var bacteriaIncubationPeriod = 44;//int. 1: fastest replication,  100:slowest replication
var bacteriaSpread = 8;//int. odds of bacteria spreading to each adjacent cell each frame 1=0.1%, 2=0.2%...
var abnormalForm = 38;//int. odds of respawned cells becoming abnormal. 1=0.1%, 2=0.2%...
var cancerForm = 2;//int. odds of abnormal cell becoming cancer cell each frame 1=0.1%, 2=0.2% ...
var cancerSpread = 1;//int. odds of cancer spreading to each adjacent cell each frame 1=0.1%, 7 = 0.7%


var virusPointer = 0; //points to the current virus being written in virusArray. range 0 to 199.
var virusArray = []; //holds data for 200 viruses. Xpos, Ypos, heading.
for(var i=0; i<200; i++){ //initialize virus array (drawing viruses off-screen, -10,-10)
    virusArray[(3*i)] = -10;//Xpos
    virusArray[(3*i) + 1] = -10;//Ypos
    virusArray[(3*i) + 2] = 0;//Heading (0 to 7, starting pointing right, rotating counterclockwise 45degrees
}                                    // 0 = 0degrees, 2 = 90 degrees, 4=180degrees


var antibodyPointer = 0; //points to the current antibody being written in antibodyArray. range 0 to 99.
var antibodyArray = []; //holds data for 50 antibody. Xpos, Ypos, heading.
for(var i=0; i<100; i++){ //drawing antibodies off-screen @ -100,-100
    antibodyArray[(3*i)] = -100;//Xpos
    antibodyArray[(3*i)+1] = -100;//Ypos
    antibodyArray[(3*i)+2] = 0;//Heading (0 to 7, starting pointing right, rotating counterclockwise 45degrees
}                                    // 0 = 0degrees, 2 = 90 degrees, 4=180degrees

var leukocyteArray = []; //holds data for 30 leukocytes. Xpos, Ypos, cell type, Ytarget, action step
//(for macrophage, action = phagocytosis, for natural killer cell action = trigger apoptosis 

for(var i=0; i<30; i++){
    var randomX = 165+Math.floor((590*Math.random()));
    var randomY = 55+Math.floor((465*Math.random()));
    leukocyteArray[(6*i)+0] =randomX;//Xpos
    leukocyteArray[(6*i)+1] =randomY;//Ypos
    //starting leukocyte spawn:
    if(i<17){
        leukocyteArray[(6*i)+2] = 0; //17 macrophages
    }else if(i<25){
        leukocyteArray[(6*i)+2] = 2; //8 natural killer cells
    }else if(i<27){
        leukocyteArray[(6*i)+2] = 3; //2 helper T cells
    }else{
        leukocyteArray[(6*i)+2] = 5; //3 B cells
    }
    //Cell type. 0=macrophage, 1=macrophage with antigen being presented,
    //2=natural killer cell, 3 = helper T cell, 4=helper T cell with antigen being presented, 
    //5= B cell, 6=plasma cell
    leukocyteArray[(6*i)+3] =randomX;//Xtarget
    leukocyteArray[(6*i)+4] =randomY;//Ytarget
    leukocyteArray[(6*i)+5] =0;//Phagocytosis step(0 = normal, 15 = selected) or trigger apoptosis step
}

//initialize cell array
var cellArray = []; //holds data for 320 cells. Xpos, Ypos, Status
/* Status:
0 = healthy
1 = virus_1 - 2 = virus_2 - 3 = virus_3 ... 12 = virus_12
13 = no cell
14 = abnormal cell
15 = cancer cell
16 = cellular debris
17 = cellular debris incubating 1
18 = cellular debris incubating 2
19 = cellular debris incubating 3
20 = cellular debris virulent
21 = cell bacteria incubating 1
22 = cell bacteria incubating 2
23 = cell bacteria incubating 3
cells are numbered 
0  1  2  ... 15
16 17 18 ... 31
...
304   ...    319
*/

for(var row = 0; row < 20; row++){
        for(var column = 0; column < 16; column++){
            cellArray[3*(column + (16*row))] = 160 + (40*column); //Xposition
            cellArray[(3*(column + (16*row))) + 1] = 50 + (25*row); //Yposition
            cellArray[(3*(column + (16*row))) + 2] = 0;//Status (0 = healthy)
        }
    }
/*
cellArray[3*87 + 2] = 1; // infect a cell (viral)||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||
cellArray[3*157 + 2] = 21; // infect a cell (bacterial)||||||||||||||||||||||||||||||||||||||||||||||||||||||||
*/


//load images: game elements (general: backgrounds, status box, et cetera)
var statusBox = new Image();
var reticle = new Image();
var reticleBox = new Image();
var presentedAntigen = new Image();
var infoBox1 = new Image();
var infoBox2 = new Image();
var infoBox3 = new Image();
var infoBox4 = new Image();
var infoBox5 = new Image();
var infoBox6 = new Image();
var infoBox7 = new Image();
var bCellBox = new Image();
var helperTBox = new Image();
var macrophageBox = new Image();
var naturalKillerBox = new Image();
var plasmaCellBox = new Image();
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//load image: virus
var virus = new Image();
virus.src = " AAASdAAAEnQB3mYfeAAAABl0RVh0U29mdHdhcmUAQWRvYmUgSW1hZ2VSZWFkeXHJZTwAAAAhSURB VAiZbcshDgAACMSwwv//fCgSBFUzAyEhUBurfe4ycFkJ+kpiISMAAAAASUVORK5CYII=";
//load images: cilia
var ciliaA = new Image();
var ciliaB = new Image();
var ciliaC = new Image();
var ciliaNone = new Image();
ciliaA.src = "";
ciliaB.src = "";
ciliaC.src = "";
ciliaNone.src = "";
//load images: cells
var cellNone = new Image();
var cellHealthy = new Image();
var cellAbnormal = new Image();
var cellDebris = new Image();
var cellReticle = new Image();
var cellCancer = new Image();
var cellVirus1 = new Image();
var cellVirus2 = new Image();
var cellVirus3 = new Image();
var cellVirus4 = new Image();
var cellVirus5 = new Image();
var cellVirus6 = new Image();
var cellVirus7 = new Image();
var cellVirus8 = new Image();
var cellVirus9 = new Image();
var cellVirus10 = new Image();
var cellVirus11 = new Image();
var cellVirus12 = new Image();
cellNone.src = "";
cellHealthy.src = "";
cellAbnormal.src = "";
cellDebris.src = "";
cellReticle.src = "";
cellCancer.src = "";
cellVirus1.src = "";
cellVirus2.src = "";
cellVirus3.src = "";
cellVirus4.src = "";
cellVirus5.src = "";
cellVirus6.src = "";
cellVirus7.src = "";
cellVirus8.src = "";
cellVirus9.src = "";
cellVirus10.src = "";
cellVirus11.src = "";
cellVirus12.src = "";
//load images: bacteria + cell
var cellBacteria1 = new Image();
var cellBacteria2 = new Image();
var cellBacteria3 = new Image();
var cellDebrisIncubating1 = new Image();
var cellDebrisIncubating2 = new Image();
var cellDebrisIncubating3 = new Image();
var cellDebrisVirulent = new Image();
cellBacteria1.src = "";
cellBacteria2.src = "";
cellBacteria3.src = "";
cellDebrisIncubating1.src = "";
cellDebrisIncubating2.src = "";
cellDebrisIncubating3.src = "";
cellDebrisVirulent.src = "";
//load images: macrophage
var macrophageRest = new Image();
var macrophageEat1 = new Image();
var macrophageEat2 = new Image();
var macrophageEat3 = new Image();
var macrophageEat4 = new Image();
var macrophageEat5 = new Image();
var macrophageEat6 = new Image();
var macrophageEat7 = new Image();
var macrophageEat8 = new Image();
var macrophageEat9 = new Image();
var macrophageEat10 = new Image();
var macrophageEat11 = new Image();
var macrophageEat12 = new Image();
var macrophageEat13 = new Image();
var macrophageEat14 = new Image();
macrophageRest.src = "";
macrophageEat1.src = "";
macrophageEat2.src = "";
macrophageEat3.src = "";
macrophageEat4.src = "";
macrophageEat5.src = "";
macrophageEat6.src = "";
macrophageEat7.src = "";
macrophageEat8.src = "";
macrophageEat9.src = "";
macrophageEat10.src = "";
macrophageEat11.src = "";
macrophageEat12.src = "";
macrophageEat13.src = "";
macrophageEat14.src = "";
//load images: natural killer cell
var naturalKillerRest = new Image();
var naturalKillerTriggerApoptosis1 = new Image();
var naturalKillerTriggerApoptosis2 = new Image();
var naturalKillerTriggerApoptosis3 = new Image();
var naturalKillerTriggerApoptosis4 = new Image();
var naturalKillerTriggerApoptosis5 = new Image();
var naturalKillerTriggerApoptosis6 = new Image();
var naturalKillerTriggerApoptosis7 = new Image();
var naturalKillerTriggerApoptosis8 = new Image();
naturalKillerRest.src = "";
naturalKillerTriggerApoptosis1.src = "";
naturalKillerTriggerApoptosis2.src = "";
naturalKillerTriggerApoptosis3.src = "";
naturalKillerTriggerApoptosis4.src = "";
naturalKillerTriggerApoptosis5.src = "";
naturalKillerTriggerApoptosis6.src = "";
naturalKillerTriggerApoptosis7.src = "";
naturalKillerTriggerApoptosis8.src = "";
//load images: other leukocytes
var bCell = new Image();
var helperTCell = new Image();
var helperTPresentingAntigen = new Image();
var plasmaCellA = new Image();
var plasmaCellB = new Image();
var plasmaCellC = new Image();
bCell.src = "";
helperTCell.src = "";
helperTPresentingAntigen.src="";
plasmaCellA.src = "";
plasmaCellB.src = "";
plasmaCellC.src = "";

//load images: antibodies
var antibodyA = new Image();
var antibodyB = new Image();
var antibodyC = new Image();
var antibodyD = new Image();
var antibodyE = new Image();
var antibodyF = new Image();
var antibodyG = new Image();
var antibodyH = new Image();
antibodyA.src = "";
antibodyB.src = "";
antibodyC.src = "";
antibodyD.src = "";
antibodyE.src = "";
antibodyF.src = "";
antibodyG.src = "";
antibodyH.src = "";

function setupGame(){
    var gameCanvas = document.getElementById("gameCanvas");
    gameCanvas.addEventListener("click", mouseClicked);
}

function mouseClicked(mouseEvent){
    mouse_clicked = 1;
    mouseX = mouseEvent.offsetX;
    mouseY = mouseEvent.offsetY;
}
function defaultSetup(){//set all the variables to their default values
animation_frame = 0; //0 to 2199, +1 each frame, resets to 0 instead of reaching 2200
mouse_clicked = 0; //debounce/indicator flag for mouse click
mouseX = 0;
mouseY = 0;

mucusFlow = 1; //int. 1: flowing, 0:stopped
maternalAntibodies = 0; //int. 1:present, 0:absent
plasmaCellAntibodySpawnRate = 7;//int. 1: fastest, 100: slowest
cellRegenerationRate = 1;//int. 1:fastest, 2199:slowest
virusIncubationPeriod = 16;//int. 1:fastest replication, 50:slowest replication
bacteriaIncubationPeriod = 86;//int. 1: fastest replication,  100:slowest replication
bacteriaSpread = 8;//int. odds of bacteria spreading to each adjacent cell each frame 1=0.1%, 2=0.2%...
abnormalForm = 26;//int. odds of respawned cells becoming abnormal. 1=0.1%, 2=0.2%...
cancerForm = 2;//int. odds of abnormal cell becoming cancer cell each frame 1=0.1%, 2=0.2% ...
cancerSpread = 1;//int. odds of cancer spreading to each adjacent cell each frame 1=0.1%, 7 = 0.7%


virusPointer = 0; //points to the current virus being written in virusArray. range 0 to 199.
for(var i=0; i<200; i++){ //initialize virus array (drawing viruses off-screen, -10,-10)
    virusArray[(3*i)] = -10;//Xpos
    virusArray[(3*i) + 1] = -10;//Ypos
    virusArray[(3*i) + 2] = 0;//Heading (0 to 7, starting pointing right, rotating counterclockwise 45degrees
}                                    // 0 = 0degrees, 2 = 90 degrees, 4=180degrees


antibodyPointer = 0; //points to the current antibody being written in antibodyArray. range 0 to 99.
for(var i=0; i<100; i++){ //drawing antibodies off-screen @ -100,-100
    antibodyArray[(3*i)] = -100;//Xpos
    antibodyArray[(3*i)+1] = -100;//Ypos
    antibodyArray[(3*i)+2] = 0;//Heading (0 to 7, starting pointing right, rotating counterclockwise 45degrees
}                                    // 0 = 0degrees, 2 = 90 degrees, 4=180degrees

for(var i=0; i<30; i++){
    var randomX = 165+Math.floor((590*Math.random()));
    var randomY = 55+Math.floor((465*Math.random()));
    leukocyteArray[(6*i)+0] =randomX;//Xpos
    leukocyteArray[(6*i)+1] =randomY;//Ypos
    //starting leukocyte spawn:
    if(i<17){
        leukocyteArray[(6*i)+2] = 0; //17 macrophages
    }else if(i<25){
        leukocyteArray[(6*i)+2] = 2; //8 natural killer cells
    }else if(i<27){
        leukocyteArray[(6*i)+2] = 3; //2 helper T cells
    }else{
        leukocyteArray[(6*i)+2] = 5; //3 B cells
    }
    //Cell type. 0=macrophage, 1=macrophage with antigen being presented,
    //2=natural killer cell, 3 = helper T cell, 4=helper T cell with antigen being presented, 
    //5= B cell, 6=plasma cell
    leukocyteArray[(6*i)+3] =randomX;//Xtarget
    leukocyteArray[(6*i)+4] =randomY;//Ytarget
    leukocyteArray[(6*i)+5] =0;//Phagocytosis step(0 = normal, 15 = selected) or trigger apoptosis step
}

//initialize cell array
//holds data for 320 cells. Xpos, Ypos, Status
/* Status:
0 = healthy
1 = virus_1 - 2 = virus_2 - 3 = virus_3 ... 12 = virus_12
13 = no cell
14 = abnormal cell
15 = cancer cell
16 = cellular debris
17 = cellular debris incubating 1
18 = cellular debris incubating 2
19 = cellular debris incubating 3
20 = cellular debris virulent
21 = cell bacteria incubating 1
22 = cell bacteria incubating 2
23 = cell bacteria incubating 3
cells are numbered 
0  1  2  ... 15
16 17 18 ... 31
...
304   ...    319
*/

for(var row = 0; row < 20; row++){
        for(var column = 0; column < 16; column++){
            cellArray[3*(column + (16*row))] = 160 + (40*column); //Xposition
            cellArray[(3*(column + (16*row))) + 1] = 50 + (25*row); //Yposition
            cellArray[(3*(column + (16*row))) + 2] = 0;//Status (0 = healthy)
        }
    }
}

function setupLevel1(){
    defaultSetup();
    for(var leukoCount = 2; leukoCount < 30; leukoCount++){//clear all leukocytes above the first two macrophages
        leukocyteArray[(6*leukoCount)+0]=-100;
        leukocyteArray[(6*leukoCount)+1]=-100;
        leukocyteArray[(6*leukoCount)+4]=-100;
        leukocyteArray[(6*leukoCount)+5]=-100;
    }
    abnormalForm = 0; //no chance of abnormal cells forming.
    cellArray[3*160 + 2] = 21; // infect a cell (bacterial)
}

function setupLevel2(){
    defaultSetup();
    for(var leukoCount = 4; leukoCount < 30; leukoCount++){//clear all leukocytes above the first two macrophages
        if((leukoCount != 17)&&(leukoCount!=18)){//and allow two natural killer cells
            leukocyteArray[(6*leukoCount)+0]=-100;
            leukocyteArray[(6*leukoCount)+1]=-100;
            leukocyteArray[(6*leukoCount)+4]=-100;
            leukocyteArray[(6*leukoCount)+5]=-100;
        }
    }
    virusIncubationPeriod = 12;
    abnormalForm = 0; //no chance of abnormal cells forming.
    cellArray[3*224 + 2] = 1; // infect a cell (viral)
}

function setupLevel3(){
    defaultSetup();
    for(var leukoCount = 4; leukoCount < 30; leukoCount++){//clear all leukocytes above the first two macrophages
        if((leukoCount != 17)&&(leukoCount!=18)){//and allow two natural killer cells
            leukocyteArray[(6*leukoCount)+0]=-100;
            leukocyteArray[(6*leukoCount)+1]=-100;
            leukocyteArray[(6*leukoCount)+4]=-100;
            leukocyteArray[(6*leukoCount)+5]=-100;
        }
    }
    virusIncubationPeriod = 12;
    cellArray[3*224 + 2] = 14; // make a cell abnormal
    cellArray[3*208 + 2] = 14; // make a cell abnormal
    cellArray[3*192 + 2] = 14; // make a cell abnormal
}

function setupLevel4(){
    defaultSetup();
    for(var leukoCount = 4; leukoCount < 30; leukoCount++){//clear all leukocytes above the first two macrophages
        if((leukoCount != 17)&&(leukoCount!=18)&&//and allow two natural killer cells
            (leukoCount!=26)&&(leukoCount!=27)){//and one helper t cell and one b cell
            leukocyteArray[(6*leukoCount)+0]=-100;
            leukocyteArray[(6*leukoCount)+1]=-100;
            leukocyteArray[(6*leukoCount)+4]=-100;
            leukocyteArray[(6*leukoCount)+5]=-100;
        }
    }
    virusIncubationPeriod = 12;
    cellArray[3*208 + 2] = 14; // make a cell abnormal
    cellArray[3*192 + 2] = 21; // make a cell bacterial
}
function setupLevel5plus(){
    defaultSetup();

cellRegenerationRate = 1+(Math.floor(currentLevel/4));//int. 1:fastest, 2199:slowest
virusIncubationPeriod = 1+(Math.floor(80/currentLevel));//int. 1:fastest replication, 50:slowest replication
bacteriaIncubationPeriod = 1+ (Math.floor(430/currentLevel));//int. 1: fastest replication,  100:slowest replication
bacteriaSpread = currentLevel;//int. odds of bacteria spreading to each adjacent cell each frame 1=0.1%, 2=0.2%...
abnormalForm = 20 + currentLevel;//int. odds of respawned cells becoming abnormal. 1=0.1%, 2=0.2%...
cancerForm = 1+(Math.floor(currentLevel/4));//int. odds of abnormal cell becoming cancer cell each frame 1=0.1%, 2=0.2% ...
cancerSpread = 1+(Math.floor(currentLevel/4));//int. odds of cancer spreading to each adjacent cell each frame 1=0.1%, 7 = 0.7%

    var defectiveCells = 0;
    var targetCell = 0;
    while(defectiveCells < currentLevel){
        if(defectiveCells >= 160){
        defectiveCells = currentLevel + 1;
        }
        if(1000*Math.random()<25){
            if(1000*Math.random() < 500){
                cellArray[targetCell*3 +2] = 21;
                defectiveCells++;
                
            }else{
                if(1000*Math.random() < 500){
                    cellArray[targetCell*3 +2] = 1;
                    defectiveCells++;
                }else{
                    cellArray[targetCell*3 +2] = 14;
                    defectiveCells++;
                }
            }
        }
        targetCell++;
        if(targetCell == 320){
        targetCell = 0;
        }
    }
}

function updateScreen(){
    setTimeout(function() {
    requestAnimationFrame(updateScreen);
    //my actual game refresh code begins below, special sauce above

    animation_frame += 1;
    if(animation_frame >= 2200){
    animation_frame = 0;
    }

    var gameCanvas = document.getElementById("gameCanvas");
    gameCanvas.width = 800; //erase canvas content

    //draw wind background
    var windShift = 0;
    if(animation_frame < 550){ //breathe in
        windShift = 550 - animation_frame;
    }
    if(animation_frame >= 550 && animation_frame < 1100){ //breathe out
        windShift = animation_frame - 550;
    }
    if(animation_frame >= 1100 && animation_frame < 1650){ //breathe in
        windShift = 1650 - animation_frame;
    }
    if(animation_frame >= 1650){ //breathe out
        windShift = animation_frame - 1650;
    }
    

    //draw mucus background

    //draw cilia
var deadCilia = 0;
    for(var row = 0; row < 20; row++){ 
        if((cellArray[(3*(16*row))+2] == 13)||((cellArray[(3*(16*row))+2] > 15)&&(cellArray[(3*(16*row))+2] < 21))){//if it's dead or debris...
            deadCilia++;
                if(deadCilia > 10){
                    mucusFlow = 0;
                }else{
                    mucusFlow = 1;
                }
            gameCanvas.getContext("2d").drawImage(ciliaNone, 148, 50+ (25 * row));
        }else{//otherwise (it's alive)
        if(animation_frame % 3 == 0){
            gameCanvas.getContext("2d").drawImage(ciliaA, 148, 50+ (25 * row));
        }
        if(animation_frame % 3 == 1){
            gameCanvas.getContext("2d").drawImage(ciliaB, 148, 50+ (25 * row));
        }
        if(animation_frame % 3 == 2){
            gameCanvas.getContext("2d").drawImage(ciliaC, 148, 50+ (25 * row));
        }
        }
    }

    //draw status box
    gameCanvas.getContext("2d").drawImage(statusBox, 148, 0);
    if(reticlePresent == 1){
        gameCanvas.getContext("2d").drawImage(reticleBox, 148, 0);
    }

    //cell field update/draw functions below 
    for(var cellNumber = 0; cellNumber < 320; cellNumber++){
        //update function:
if(animation_frame % virusIncubationPeriod == 0){
        if(cellArray[(3*cellNumber)+2] > 0 && cellArray[(3*cellNumber)+2] < 12){ //if virus incubating
            cellArray[(3*cellNumber)+2]++;
        }else if(cellArray[(3*cellNumber)+2]==12){ //if cell lyses
            cellArray[(3*cellNumber)+2] = 16;
            for(var i=0; i<8; i++){//make 8 viruses
                virusArray[(3*virusPointer)]   = cellArray[(3*cellNumber)] +   19;//X position
                virusArray[(3*virusPointer)+1] = cellArray[(3*cellNumber)+1] + 12;//Y position
                virusArray[(3*virusPointer)+2] = i;//Heading
                virusPointer++;
                if(virusPointer > 199){
                    virusPointer = 0;
                }
            }
        }
}
        //draw function below
        switch (cellArray[(3*cellNumber) + 2]){
            case 0:
                gameCanvas.getContext("2d").drawImage(cellHealthy, cellArray[3*cellNumber],cellArray[(3*cellNumber) + 1]);
            break;

            case 1:
                gameCanvas.getContext("2d").drawImage(cellVirus1, cellArray[3*cellNumber],cellArray[(3*cellNumber) + 1]);
            break;

            case 2:
                gameCanvas.getContext("2d").drawImage(cellVirus2, cellArray[3*cellNumber],cellArray[(3*cellNumber) + 1]);
            break;

            case 3:
                gameCanvas.getContext("2d").drawImage(cellVirus3, cellArray[3*cellNumber],cellArray[(3*cellNumber) + 1]);
            break;

            case 4:
                gameCanvas.getContext("2d").drawImage(cellVirus4, cellArray[3*cellNumber],cellArray[(3*cellNumber) + 1]);
            break;

            case 5:
                gameCanvas.getContext("2d").drawImage(cellVirus5, cellArray[3*cellNumber],cellArray[(3*cellNumber) + 1]);
            break;

            case 6:
                gameCanvas.getContext("2d").drawImage(cellVirus6, cellArray[3*cellNumber],cellArray[(3*cellNumber) + 1]);
            break;

            case 7:
                gameCanvas.getContext("2d").drawImage(cellVirus7, cellArray[3*cellNumber],cellArray[(3*cellNumber) + 1]);
            break;

            case 8:
                gameCanvas.getContext("2d").drawImage(cellVirus8, cellArray[3*cellNumber],cellArray[(3*cellNumber) + 1]);
            break;

            case 9:
                gameCanvas.getContext("2d").drawImage(cellVirus9, cellArray[3*cellNumber],cellArray[(3*cellNumber) + 1]);
            break;

            case 10:
                gameCanvas.getContext("2d").drawImage(cellVirus10, cellArray[3*cellNumber],cellArray[(3*cellNumber) + 1]);
            break;

            case 11:
                gameCanvas.getContext("2d").drawImage(cellVirus11, cellArray[3*cellNumber],cellArray[(3*cellNumber) + 1]);
            break;

            case 12:
                gameCanvas.getContext("2d").drawImage(cellVirus12, cellArray[3*cellNumber],cellArray[(3*cellNumber) + 1]);
            break;

            case 13://if no cell, small chance of regrowth
                gameCanvas.getContext("2d").drawImage(cellNone, cellArray[3*cellNumber],cellArray[(3*cellNumber) + 1]);
                if(cellRegenerationRate != 0){
                    if((1000*Math.random() < 86)&&(animation_frame % cellRegenerationRate == 0)){
                        if(1000*Math.random() > abnormalForm){
                            cellArray[3*cellNumber + 2] = 0;//set to normal cell
                        }else{
                            cellArray[3*cellNumber + 2] = 14;//set to abnormal cell ((abnormalForm/10) percent chance)
                        }
                    }
                }
            break;

            case 14:
                gameCanvas.getContext("2d").drawImage(cellAbnormal, cellArray[3*cellNumber],cellArray[(3*cellNumber) + 1]);
                if(1000*Math.random() < cancerForm){//each frame, 0.2% chance of each abnormal cell becoming a cancer cell
                    cellArray[3*cellNumber + 2] = 15;
                }
            break;

            case 15:
                gameCanvas.getContext("2d").drawImage(cellCancer, cellArray[3*cellNumber],cellArray[(3*cellNumber) + 1]);
                if((1000*Math.random() < cancerSpread)&&(cellNumber > 15)){//CELL ABOVE
                //each frame, (cancerSpread/10)% chance of cancer spreading to each adjacent cell
                cellArray[3*(cellNumber - 16) + 2] = 15;
                }
                if((1000*Math.random() < cancerSpread)&&(cellNumber < 304)){//CELL BELOW
                //each frame, (cancerSpread/10)% chance of cancer spreading to each adjacent cell
                cellArray[3*(cellNumber + 16) + 2] = 15;
                }
                if((1000*Math.random() < cancerSpread)&&(cellNumber % 16 != 15)){//CELL TO RIGHT
                //each frame, (cancerSpread/10)% chance of cancer spreading to each adjacent cell
                cellArray[3*(cellNumber + 1) + 2] = 15;
                }
                if((1000*Math.random() < cancerSpread)&&(cellNumber % 16 != 0)){//CELL TO LEFT
                //each frame, (cancerSpread/10)% chance of cancer spreading to each adjacent cell
                cellArray[3*(cellNumber - 1) + 2] = 15;
                }
            break;

            case 16:
                gameCanvas.getContext("2d").drawImage(cellDebris, cellArray[3*cellNumber],cellArray[(3*cellNumber) + 1]);
            break;

            case 17:
                gameCanvas.getContext("2d").drawImage(cellDebrisIncubating1, cellArray[3*cellNumber],cellArray[(3*cellNumber) + 1]);
                if((animation_frame % bacteriaIncubationPeriod)==0){
                    cellArray[(3*cellNumber) + 2]++;
                }
            break;

            case 18:
                gameCanvas.getContext("2d").drawImage(cellDebrisIncubating2, cellArray[3*cellNumber],cellArray[(3*cellNumber) + 1]);
                if((animation_frame % bacteriaIncubationPeriod)==0){
                    cellArray[(3*cellNumber) + 2]++;
                }
            break;

            case 19:
                gameCanvas.getContext("2d").drawImage(cellDebrisIncubating3, cellArray[3*cellNumber],cellArray[(3*cellNumber) + 1]);
                if((animation_frame % bacteriaIncubationPeriod)==0){
                    cellArray[(3*cellNumber) + 2]++;
                }
            break;

            case 20:
                gameCanvas.getContext("2d").drawImage(cellDebrisVirulent, cellArray[3*cellNumber],cellArray[(3*cellNumber) + 1]);                
                if((1000*Math.random() < bacteriaSpread)&&(cellNumber > 15)){//CELL ABOVE
                //each frame, (bacteriaSpread/10)% chance of bacteria spreading to each adjacent cell
                    if(cellArray[3*(cellNumber - 16) + 2] == 0){ //if above cell normal
                        cellArray[3*(cellNumber - 16) + 2] = 21;
                    }
                    if(cellArray[3*(cellNumber - 16) + 2] == 16){ //if above cell debris
                        cellArray[3*(cellNumber - 16) + 2] = 17;
                    }
                    if(cellArray[3*(cellNumber - 16) + 2] == 13){ //if above cell empty
                        cellArray[3*(cellNumber - 16) + 2] = 17;
                    }                
                }
                if((1000*Math.random() < bacteriaSpread)&&(cellNumber < 304)){//CELL BELOW
                    //each frame, (bacteriaSpread/10)% chance of bacteria spreading to each adjacent cell
                    if(cellArray[3*(cellNumber + 16) + 2] == 0){ //if below cell normal
                        cellArray[3*(cellNumber + 16) + 2] = 21;
                    }
                    if(cellArray[3*(cellNumber + 16) + 2] == 16){ //if below cell debris
                        cellArray[3*(cellNumber + 16) + 2] = 17;
                    }
                    if(cellArray[3*(cellNumber + 16) + 2] == 13){ //if below cell empty
                        cellArray[3*(cellNumber + 16) + 2] = 17;
                    } 
                }
                if((1000*Math.random() < bacteriaSpread)&&(cellNumber % 16 != 15)){//CELL TO RIGHT
                    //each frame, (bacteriaSpread/10)% chance of bacteria spreading to each adjacent cell
                    if(cellArray[3*(cellNumber + 1) + 2] == 0){ //if right cell normal
                        cellArray[3*(cellNumber + 1) + 2] = 21;
                    }
                    if(cellArray[3*(cellNumber + 1) + 2] == 16){ //if right cell debris
                        cellArray[3*(cellNumber + 1) + 2] = 17;
                    }
                    if(cellArray[3*(cellNumber + 1) + 2] == 13){ //if right cell empty
                        cellArray[3*(cellNumber + 1) + 2] = 17;
                    } 
                }
                if((1000*Math.random() < bacteriaSpread)&&(cellNumber % 16 != 0)){//CELL TO LEFT
                    //each frame, (bacteriaSpread/10)% chance of bacteria spreading to each adjacent cell
                    if(cellArray[3*(cellNumber - 1) + 2] == 0){ //if left cell normal
                        cellArray[3*(cellNumber - 1) + 2] = 21;
                    }
                    if(cellArray[3*(cellNumber - 1) + 2] == 16){ //if left cell debris
                        cellArray[3*(cellNumber - 1) + 2] = 17;
                    }
                    if(cellArray[3*(cellNumber - 1) + 2] == 13){ //if left cell empty
                        cellArray[3*(cellNumber - 1) + 2] = 17;
                    } 
                }
            break;

            case 21:
                gameCanvas.getContext("2d").drawImage(cellBacteria1, cellArray[3*cellNumber],cellArray[(3*cellNumber) + 1]);
                if((animation_frame % bacteriaIncubationPeriod)==0){
                    cellArray[(3*cellNumber) + 2]++;
                }
            break;

            case 22:
                gameCanvas.getContext("2d").drawImage(cellBacteria2, cellArray[3*cellNumber],cellArray[(3*cellNumber) + 1]);
                if((animation_frame % bacteriaIncubationPeriod)==0){
                    cellArray[(3*cellNumber) + 2]++;
                }
            break;

            case 23:
                gameCanvas.getContext("2d").drawImage(cellBacteria3, cellArray[3*cellNumber],cellArray[(3*cellNumber) + 1]);
                if((animation_frame % bacteriaIncubationPeriod)==0){
                    cellArray[(3*cellNumber) + 2] = 19;
                }
            break;
        }
    }



    //update and draw 200 viruses!
    for(var i = 0; i<200; i++){
        //update position
        switch (virusArray[3*i+2]){
        case 0:
            virusArray[3*i]++;
        break;

        case 1:
            virusArray[3*i]++;
            virusArray[(3*i) + 1]--;
        break;

        case 2:
            virusArray[(3*i) + 1]--;
        break;

        case 3:
            virusArray[3*i]--;
            virusArray[(3*i) + 1]--;
        break;

        case 4:
            virusArray[3*i]--;
        break;

        case 5:
            virusArray[3*i]--;
            virusArray[(3*i) + 1]++;
        break;

        case 6:
            virusArray[(3*i) + 1]++;
        break;

        case 7:
            virusArray[3*i]++;
            virusArray[(3*i) + 1]++;
        break;
        }
        
        //check for collisions/infect collided cells/et cetera
            //cell field ranges. x: 160 to 800 
            //y: 50 to 550

        //check boundaries
        if(((virusArray[3*i]<160)||(virusArray[3*i]>799))&&(virusArray[3*i] != -10)){
                                                 //check Xbound (-10 is virus nodraw)
            virusArray[3*i] = -10;
            virusArray[3*i + 1] = -10;
        }
        if(((virusArray[3*i + 1]<50)||(virusArray[3*i + 1]>549))&&(virusArray[3*i + 1] != -10)){
                                                 //check Ybound (-10 is virus nodraw)
            virusArray[3*i] = -10;
            virusArray[3*i + 1] = -10;
        }


        //check leukocyte (looking for macrophage) collision/activate macrophage if collided
        for(var leukocyteNum = 0; leukocyteNum < 30; leukocyteNum++){

            if((virusArray[3*i] >= leukocyteArray[6*leukocyteNum])&&
                (virusArray[3*i] < 45 + leukocyteArray[6*leukocyteNum])&&
                (virusArray[3*i+1] >= leukocyteArray[6*leukocyteNum+1])&&
                (virusArray[3*i+1] < 30 + leukocyteArray[6*leukocyteNum+1])&&
                (leukocyteArray[6*leukocyteNum+2] == 0)){//check leukocyte hitbox -- if hit, and it's a macrophage, reset virus to -10,-10 and set macrophage "eat" animation + mark macrophage as displaying antigen
                //resetVirus

                virusArray[3*i] = -10;
                virusArray[3*i+1] = -10;
                if(leukocyteArray[6*leukocyteNum+5] == 0){//if normal macrophage state
                    leukocyteArray[6*leukocyteNum+5] = 1;//trigger "eat" animation
                    leukocyteArray[6*leukocyteNum+2] = 1;//mark as displaying antigen
                }else if(leukocyteArray[6*leukocyteNum+5] == 15){//if selected macrophage
                    leukocyteArray[6*leukocyteNum+2] = 1;//mark as displaying antigen
                }
            }

        }



        //check antibody collision + remove virus
        for(var antibodyNum = 0; antibodyNum < 100; antibodyNum++){
            if((virusArray[3*i] >= antibodyArray[3*antibodyNum])&&(virusArray[3*i] < 16+ antibodyArray[3*antibodyNum])&&(virusArray[3*i+1] >= antibodyArray[3*antibodyNum + 1])&&(virusArray[3*i+1] < 16+ antibodyArray[3*antibodyNum + 1])){//check against antibody hitbox xval && yval
            //if hit, reset virus
                virusArray[3*i] = -10;
                virusArray[3*i+1] = -10;
/*
                antibodyArray[3*antibodyNum] = -100;  //note: antibody removal on virus contact is turned off
                                                        // (they were
                antibodyArray[3*antibodyNum+1] = -100;//underpowered, so I'm buffing them at the expense of
                                                      //realism)
                
*/
            }
}
        
        //check current cell # / infect
        var currentCell = Math.floor((virusArray[3*i]-160)/40) + (16*(Math.floor((virusArray[3*i+1]-50)/25)));
        if(cellArray[3*currentCell + 2] == 0){
            cellArray[3*currentCell + 2] = 1;
        }
        if((cellArray[3*currentCell +2] < 13)||
        (cellArray[3*currentCell +2] == 14)||
        (cellArray[3*currentCell +2] == 15)){//unless the space is empty,cellular debris,or bacteria-infected,
                                             // virus disappears

                                            //(virus disappears if cell is normal, virus-infected, abnormal,
                                            // or cancer)
            virusArray[3*i] = -10;
            virusArray[3*i + 1] = -10;
        }

        //draw code
        gameCanvas.getContext("2d").drawImage(virus, virusArray[3*i], virusArray[3*i+1]);
    }

    //update and draw 100 antibodies:
    for(var i=0;i<100;i++){
    //update position
        switch (antibodyArray[3*i+2]){
        case 0:
            antibodyArray[3*i]+=2;
        break;

        case 1:
            antibodyArray[3*i]+=2;
            antibodyArray[(3*i) + 1]-=2;
        break;

        case 2:
            antibodyArray[(3*i) + 1]-=2;
        break;

        case 3:
            antibodyArray[3*i]-=2;
            antibodyArray[(3*i) + 1]-=2;
        break;

        case 4:
            antibodyArray[3*i]-=2;
        break;

        case 5:
            antibodyArray[3*i]-=2;
            antibodyArray[(3*i) + 1]+=2;
        break;

        case 6:
            antibodyArray[(3*i) + 1]+=2;
        break;

        case 7:
            antibodyArray[3*i]+=2;
            antibodyArray[(3*i) + 1]+=2;
        break;
        }

        //check boundaries
        if(((antibodyArray[3*i]<160)||(antibodyArray[3*i]>800))&&(antibodyArray[3*i] != -100)){
                                                 //check Xbound (-100 is antibody nodraw)
            antibodyArray[3*i] = -100;
            antibodyArray[3*i + 1] = -100;
        }
        if(((antibodyArray[3*i + 1]<50)||(antibodyArray[3*i + 1]>550))&&(antibodyArray[3*i + 1] != -100)){
                                                 //check Ybound (-100 is antibody nodraw)
            antibodyArray[3*i] = -100;
            antibodyArray[3*i + 1] = -100;
        }
//check to see if antibody is over a bacteria-infected cell
var currentCell = Math.floor(((antibodyArray[3*i]+8)-160)/40)+(16*(Math.floor(((antibodyArray[3*i+1]+8)-50)/25)));
        //bacteria clearing function
        switch(cellArray[3*currentCell +2]){
            case 17:
                cellArray[3*currentCell + 2]--; //decrease bacteria
                antibodyArray[3*i] = -10;//reset antibody x
                antibodyArray[3*i+1] = -10;//reset antibody y
            break;

            case 18:
                cellArray[3*currentCell + 2]--; //decrease bacteria
                antibodyArray[3*i] = -10;//reset antibody x
                antibodyArray[3*i+1] = -10;//reset antibody y
            break;

            case 19:
                cellArray[3*currentCell + 2]--; //decrease bacteria
                antibodyArray[3*i] = -10;//reset antibody x
                antibodyArray[3*i+1] = -10;//reset antibody y
            break;

            case 20://if virulent debris
                cellArray[3*currentCell + 2]--; //decrease bacteria
                antibodyArray[3*i] = -10;//reset antibody x
                antibodyArray[3*i+1] = -10;//reset antibody y
            break;

            case 21://if bacteria incubating 1
                cellArray[3*currentCell + 2] = 0; //reset to healthy
                antibodyArray[3*i] = -10;//reset antibody x
                antibodyArray[3*i+1] = -10;//reset antibody y
            break;

            case 22:
                cellArray[3*currentCell + 2]--; //decrease bacteria
                antibodyArray[3*i] = -10;//reset antibody x
                antibodyArray[3*i+1] = -10;//reset antibody y
            break;

            case 23:
                cellArray[3*currentCell + 2]--; //decrease bacteria
                antibodyArray[3*i] = -10;//reset antibody x
                antibodyArray[3*i+1] = -10;//reset antibody y
            break;
        }
    if((antibodyArray[3*i] == -100)&&(maternalAntibodies==1)){ //antibody respawn code (maternal antibodies, random locations / headings along top and bottom of play field)

    antibodyArray[3*i] = 160+Math.random()*640;
    if(Math.random() > 0.5){
        antibodyArray[(3*i)+1] = 50;
    }else{
        antibodyArray[(3*i)+1] = 550;
    }
    antibodyArray[(3*i)+2] = Math.floor(Math.random()*100) % 8;
}

        switch(((animation_frame - (animation_frame % 3))/3) % 8){ //animate the antibody
    case 0:
        gameCanvas.getContext("2d").drawImage(antibodyA, antibodyArray[3*i], antibodyArray[(3*i)+1]);
    break;

    case 1:
        gameCanvas.getContext("2d").drawImage(antibodyB, antibodyArray[3*i], antibodyArray[(3*i)+1]);
    break;

    case 2:
        gameCanvas.getContext("2d").drawImage(antibodyC, antibodyArray[3*i], antibodyArray[(3*i)+1]);
    break;

    case 3:
        gameCanvas.getContext("2d").drawImage(antibodyD, antibodyArray[3*i], antibodyArray[(3*i)+1]);
    break;

    case 4:
        gameCanvas.getContext("2d").drawImage(antibodyE, antibodyArray[3*i], antibodyArray[(3*i)+1]);
    break;

    case 5:
        gameCanvas.getContext("2d").drawImage(antibodyF, antibodyArray[3*i], antibodyArray[(3*i)+1]);
    break;

    case 6:
        gameCanvas.getContext("2d").drawImage(antibodyG, antibodyArray[3*i], antibodyArray[(3*i)+1]);
    break;

    case 7:
        gameCanvas.getContext("2d").drawImage(antibodyH, antibodyArray[3*i], antibodyArray[(3*i)+1]);
    break;
}
    }

    //update and draw macrophages

    for(var i=0;i<30;i++){
        //update leukocytes
        if(leukocyteArray[(6*i)+0] < leukocyteArray[(6*i)+3]){
            leukocyteArray[(6*i)+0]+=1;
            if(leukocyteArray[(6*i)+0] < leukocyteArray[(6*i)+3]){//if we're still not there, move slightly faster
                leukocyteArray[(6*i)+0]+=2;
            }
        }else{
            leukocyteArray[(6*i)+0]-=1;
                if(leukocyteArray[(6*i)+0] > leukocyteArray[(6*i)+3]){//if we're still not there, move slightly faster
                leukocyteArray[(6*i)+0]-=2;
            }
        }
        if(leukocyteArray[(6*i)+1] < leukocyteArray[(6*i)+4]){
            leukocyteArray[(6*i)+1]+=1;
            if(leukocyteArray[(6*i)+1] < leukocyteArray[(6*i)+4]){//move faster if there's still distance to cover
                leukocyteArray[(6*i)+1]+=2;
            }
        }else{
            leukocyteArray[(6*i)+1]-=1;
            if(leukocyteArray[(6*i)+1] > leukocyteArray[(6*i)+4]){//move faster if there's still distance to cover
                leukocyteArray[(6*i)+1]-=2;
            }
        }

        //make sure leukocytes stay in boundaries
        if((leukocyteArray[(6*i)+0]>755)&&(leukocyteArray[(6*i)+0]!= -100)){ //x too high (-100 is leukocyte nodraw)
            leukocyteArray[(6*i)+0] -= 3;
        }
        if((leukocyteArray[(6*i)+0]<160)&&(leukocyteArray[(6*i)+0]!= -100)){ //x too low (-100 is leukocyte nodraw)
            leukocyteArray[(6*i)+0] += 3;
        }
        if((leukocyteArray[(6*i)+1]>520)&&(leukocyteArray[(6*i)+0]!= -100)){ //y too high (-100 is leukocyte nodraw)
            leukocyteArray[(6*i)+1] -= 3;
        }
        if((leukocyteArray[(6*i)+1]<50)&&(leukocyteArray[(6*i)+0]!= -100)){ //y too high (-100 is leukocyte nodraw)
            leukocyteArray[(6*i)+1] += 3;
        }

        //draw macrophages
    if((leukocyteArray[(6*i)+2]==0)||(leukocyteArray[(6*i)+2]==1)){
        switch(leukocyteArray[(6*i)+5]){
        case 0:
        gameCanvas.getContext("2d").drawImage(macrophageRest, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
        if(leukocyteArray[(6*i)+2]==1){//draw antigen if presented
            gameCanvas.getContext("2d").drawImage(presentedAntigen, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
        }
        //note: here in case 0 (and case 15) is the code for removing cell debris. It's here so that it only 
        //triggers if       
        //the macrophage is at rest (or selected), making it a little slower to use vs. virus removal, which
        //  always triggers
        // on the macrophage hitbox.
        //check current cell # / clean debris 
        var currentCell = Math.floor(((leukocyteArray[6*i]+30)-160)/40)+(16*(Math.floor(((leukocyteArray[6*i+1]+15)-50)/25)));
        if(cellArray[3*currentCell + 2] == 16){ //if it's debris
            cellArray[3*currentCell + 2] = 13; //clean debris to become no cell
            leukocyteArray[(6*i+5)] = 1; //trigger "eat" animation
        }
        //bacteria clearing function
        switch(cellArray[3*currentCell +2]){
            case 17:
                cellArray[3*currentCell + 2]--; //decrease bacteria
                leukocyteArray[6*i+2] = 1; //mark macrophage as displaying antigen
                leukocyteArray[(6*i+5)] = 1; //trigger "eat" animation
            break;

            case 18:
                cellArray[3*currentCell + 2]--; //decrease bacteria
                leukocyteArray[6*i+2] = 1; //mark macrophage as displaying antigen
                leukocyteArray[(6*i+5)] = 1; //trigger "eat" animation
            break;

            case 19:
                cellArray[3*currentCell + 2]--; //decrease bacteria
                leukocyteArray[6*i+2] = 1; //mark macrophage as displaying antigen
                leukocyteArray[(6*i+5)] = 1; //trigger "eat" animation
            break;

            case 20://if virulent debris
                cellArray[3*currentCell + 2]--; //decrease bacteria
                leukocyteArray[6*i+2] = 1; //mark macrophage as displaying antigen
                leukocyteArray[(6*i+5)] = 1; //trigger "eat" animation
            break;

            case 21://if bacteria incubating 1
                cellArray[3*currentCell + 2] = 0; //reset to healthy
                leukocyteArray[6*i+2] = 1; //mark macrophage as displaying antigen
                leukocyteArray[(6*i+5)] = 1; //trigger "eat" animation
            break;

            case 22:
                cellArray[3*currentCell + 2]--; //decrease bacteria
                leukocyteArray[6*i+2] = 1; //mark macrophage as displaying antigen
                leukocyteArray[(6*i+5)] = 1; //trigger "eat" animation
            break;

            case 23:
                cellArray[3*currentCell + 2]--; //decrease bacteria
                leukocyteArray[6*i+2] = 1; //mark macrophage as displaying antigen
                leukocyteArray[(6*i+5)] = 1; //trigger "eat" animation
            break;
        }
        break;

        case 1:
        gameCanvas.getContext("2d").drawImage(macrophageEat1, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
        leukocyteArray[(6*i)+5]++;
        break;

        case 2:
        gameCanvas.getContext("2d").drawImage(macrophageEat2, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
        leukocyteArray[(6*i)+5]++;
        break;

        case 3:
        gameCanvas.getContext("2d").drawImage(macrophageEat3, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
        leukocyteArray[(6*i)+5]++;
        break;

        case 4:
        gameCanvas.getContext("2d").drawImage(macrophageEat4, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
        leukocyteArray[(6*i)+5]++;
        break;

        case 5:
        gameCanvas.getContext("2d").drawImage(macrophageEat5, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
        leukocyteArray[(6*i)+5]++;
        break;

        case 6:
        gameCanvas.getContext("2d").drawImage(macrophageEat6, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
        leukocyteArray[(6*i)+5]++;
        break;

        case 7:
        gameCanvas.getContext("2d").drawImage(macrophageEat7, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
        leukocyteArray[(6*i)+5]++;
        break;

        case 8:
        gameCanvas.getContext("2d").drawImage(macrophageEat8, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
        leukocyteArray[(6*i)+5]++;
        break;

        case 9:
        gameCanvas.getContext("2d").drawImage(macrophageEat9, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
        leukocyteArray[(6*i)+5]++;
        break;

        case 10:
        gameCanvas.getContext("2d").drawImage(macrophageEat10, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
        leukocyteArray[(6*i)+5]++;
        break;

        case 11:
        gameCanvas.getContext("2d").drawImage(macrophageEat11, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
        leukocyteArray[(6*i)+5]++;
        break;

        case 12:
        gameCanvas.getContext("2d").drawImage(macrophageEat12, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
        leukocyteArray[(6*i)+5]++;
        break;

        case 13:
        gameCanvas.getContext("2d").drawImage(macrophageEat13, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
        leukocyteArray[(6*i)+5]++;
        break;

        case 14:
        gameCanvas.getContext("2d").drawImage(macrophageEat14, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
        leukocyteArray[(6*i)+5] = 0;
        break;

        case 15:
        gameCanvas.getContext("2d").drawImage(macrophageRest, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
        gameCanvas.getContext("2d").drawImage(reticle, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
        gameCanvas.getContext("2d").drawImage(macrophageBox, 275, 0);
        if(leukocyteArray[(6*i)+2]==1){//draw antigen if presented
            gameCanvas.getContext("2d").drawImage(presentedAntigen, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
        }
        //duplicating the "clean debris" code here so you can "mop up" debris by moving the selected cell.
        //the eat animation is skipped too. Otherwise it's too hard to clean up debris.
        var currentCell = Math.floor(((leukocyteArray[6*i]+30)-160)/40)+(16*(Math.floor(((leukocyteArray[6*i+1]+15)-50)/25)));
        if(cellArray[3*currentCell + 2] == 16){ //if it's debris
            cellArray[3*currentCell + 2] = 13; //clean debris to become no cell
        }
        //bacteria clearing function
        switch(cellArray[3*currentCell +2]){
            case 17:
                cellArray[3*currentCell + 2]--; //decrease bacteria
                leukocyteArray[6*i+2] = 1; //mark macrophage as displaying antigen
            break;

            case 18:
                cellArray[3*currentCell + 2]--; //decrease bacteria
                leukocyteArray[6*i+2] = 1; //mark macrophage as displaying antigen
            break;

            case 19:
                cellArray[3*currentCell + 2]--; //decrease bacteria
                leukocyteArray[6*i+2] = 1; //mark macrophage as displaying antigen
            break;

            case 20://if virulent debris
                cellArray[3*currentCell + 2]--; //decrease bacteria
                leukocyteArray[6*i+2] = 1; //mark macrophage as displaying antigen
            break;

            case 21://if bacteria incubating 1
                cellArray[3*currentCell + 2] = 0; //reset to healthy
                leukocyteArray[6*i+2] = 1; //mark macrophage as displaying antigen
            break;

            case 22:
                cellArray[3*currentCell + 2]--; //decrease bacteria
                leukocyteArray[6*i+2] = 1; //mark macrophage as displaying antigen
            break;

            case 23:
                cellArray[3*currentCell + 2]--; //decrease bacteria
                leukocyteArray[6*i+2] = 1; //mark macrophage as displaying antigen
            break;
        }
        break;
        }
    }
//draw natural killer cells 

  if(leukocyteArray[(6*i)+2] == 2){

        switch(leukocyteArray[(6*i)+5]){

        case 0:
        gameCanvas.getContext("2d").drawImage(naturalKillerRest, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
//here's the code for triggering apoptosis (also in case 15)
        var currentCell = Math.floor(((leukocyteArray[6*i]+30)-160)/40)+(16*(Math.floor(((leukocyteArray[6*i+1]+15)-50)/25)));
//check current cell:
        if((cellArray[3*currentCell + 2] > 0)&&(cellArray[3*currentCell + 2]<13)){ //if it's virus infected      
            cellArray[3*currentCell + 2] = 16; //turn the cell into debris
            leukocyteArray[(6*i+5)] = 1; //begin "trigger apoptosis" animation
        }else if((cellArray[3*currentCell + 2] == 14)||(cellArray[3*currentCell + 2] == 15)){//or, if it's abnormal or cancerous
            cellArray[3*currentCell + 2] = 16; //turn the cell into debris
            leukocyteArray[(6*i+5)] = 1; //begin "trigger apoptosis" animation
        }
        break;

        case 1:
        gameCanvas.getContext("2d").drawImage(naturalKillerTriggerApoptosis1, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
        leukocyteArray[(6*i)+5]++;
        break;

        case 2:
        gameCanvas.getContext("2d").drawImage(naturalKillerTriggerApoptosis2, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
        leukocyteArray[(6*i)+5]++;
        break;

        case 3:
        gameCanvas.getContext("2d").drawImage(naturalKillerTriggerApoptosis3, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
        leukocyteArray[(6*i)+5]++;
        break;

        case 4:
        gameCanvas.getContext("2d").drawImage(naturalKillerTriggerApoptosis4, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
        leukocyteArray[(6*i)+5]++;
        break;

        case 5:
        gameCanvas.getContext("2d").drawImage(naturalKillerTriggerApoptosis5, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
        leukocyteArray[(6*i)+5]++;
        break;

        case 6:
        gameCanvas.getContext("2d").drawImage(naturalKillerTriggerApoptosis6, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
        leukocyteArray[(6*i)+5]++;
        break;

        case 7:
        gameCanvas.getContext("2d").drawImage(naturalKillerTriggerApoptosis7, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
        leukocyteArray[(6*i)+5]++;
        break;

        case 8:
        gameCanvas.getContext("2d").drawImage(naturalKillerTriggerApoptosis8, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
        leukocyteArray[(6*i)+5] = 0;
        break;

        case 15://draw reticle if selected
        gameCanvas.getContext("2d").drawImage(naturalKillerRest, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
        gameCanvas.getContext("2d").drawImage(reticle, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
        gameCanvas.getContext("2d").drawImage(naturalKillerBox, 275, 0);
//here's the code for triggering apoptosis (also in case 0)
        var currentCell = Math.floor(((leukocyteArray[6*i]+30)-160)/40)+(16*(Math.floor(((leukocyteArray[6*i+1]+15)-50)/25)));
//check current cell:
        if((cellArray[3*currentCell + 2] > 0)&&(cellArray[3*currentCell + 2]<13)){ //if it's virus infected      
            cellArray[3*currentCell + 2] = 16; //turn the cell into debris
        }else if((cellArray[3*currentCell + 2] == 14)||(cellArray[3*currentCell + 2] == 15)){//or, if it's abnormal or cancerous
            cellArray[3*currentCell + 2] = 16; //turn the cell into debris
        }
        break;
        }

}  
    if((leukocyteArray[(6*i)+2] == 3)||(leukocyteArray[(6*i)+2] == 4)){ // if helper T cell
        if(leukocyteArray[(6*i)+2] == 3){
        gameCanvas.getContext("2d").drawImage(helperTCell, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
        }else if(leukocyteArray[(6*i)+2] == 4){
            gameCanvas.getContext("2d").drawImage(helperTPresentingAntigen, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
        }
        if(leukocyteArray[(6*i)+5]==15){//if selected
            gameCanvas.getContext("2d").drawImage(reticle, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
        gameCanvas.getContext("2d").drawImage(helperTBox, 275, 0);
        }
        for(var leukocyteNum=0; leukocyteNum<30;leukocyteNum++){
            //check against leukocytes to see if a macrophage can give a presented antigen to the helper T 
            //cell

                if((leukocyteArray[6*i] + 30>= leukocyteArray[6*leukocyteNum]-15)&&
                (leukocyteArray[6*i] + 30< 45 + leukocyteArray[6*leukocyteNum]+15)&&
                (leukocyteArray[6*i+1] +15>= leukocyteArray[6*leukocyteNum+1]-15)&&
                (leukocyteArray[6*i+1] +15< 30 + leukocyteArray[6*leukocyteNum+1]+15)&&
                (leukocyteArray[6*leukocyteNum+2] == 1)){//check leukocyte hitbox -- if hit, and it's a
                            // macrophage displaying an antigen, copy the antigen to the helper T cell
                    leukocyteArray[6*i+2]=4;//set to T cell displaying antigen
            }
        //check against leukocytes to see if the B cell can be activated
            if((leukocyteArray[6*i] + 30>= leukocyteArray[6*leukocyteNum]-15)&&
                (leukocyteArray[6*i] + 30< 45 + leukocyteArray[6*leukocyteNum]+15)&&
                (leukocyteArray[6*i+1] +15>= leukocyteArray[6*leukocyteNum+1]-15)&&
                (leukocyteArray[6*i+1] +15< 30 + leukocyteArray[6*leukocyteNum+1]+15)&&
                (leukocyteArray[6*leukocyteNum+2] == 5)&&
                (leukocyteArray[(6*i)+2] == 4)){//check leukocyte hitbox -- if hit, and it's a
                            // b cell, and our helper T cell has an antigen, convert to plasma cell
                    leukocyteArray[6*leukocyteNum+2]=6;//set to plasma cell
            }

        }
    }
//draw b cells
    if((leukocyteArray[(6*i)+2]==5)){ //if b cell
        gameCanvas.getContext("2d").drawImage(bCell, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
        if(leukocyteArray[(6*i)+5]==15){
            gameCanvas.getContext("2d").drawImage(reticle, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
            gameCanvas.getContext("2d").drawImage(bCellBox, 275, 0);
        }
    }
//draw plasma cells
    if((leukocyteArray[(6*i)+2]==6)){ //if plasma cell
        switch(((animation_frame - (animation_frame % 2))/2) % 3){
            case 0:
                gameCanvas.getContext("2d").drawImage(plasmaCellA, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
            break;

            case 1:
                gameCanvas.getContext("2d").drawImage(plasmaCellB, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
            break;

            case 2:
                gameCanvas.getContext("2d").drawImage(plasmaCellC, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
            break;
        }
        //spawn antibodies from plasma cell 
        if((animation_frame % plasmaCellAntibodySpawnRate) == 0){
            for(var j=0;j<8;j++){
                antibodyArray[3*antibodyPointer]   = leukocyteArray[(6*i)+0]+22;
                antibodyArray[3*antibodyPointer+1] = leukocyteArray[(6*i)+1]+7;
                antibodyArray[3*antibodyPointer+2] = j;
                antibodyPointer++;
                if(antibodyPointer >= 100){
                    antibodyPointer = 0;
                }
            }
        }

        if(leukocyteArray[(6*i)+5]==15){//if reticle, draw reticle
            gameCanvas.getContext("2d").drawImage(reticle, leukocyteArray[(6*i)+0], leukocyteArray[(6*i)+1]);
            gameCanvas.getContext("2d").drawImage(plasmaCellBox, 275, 0);
        }
    }

    //cell reticle (top layer) draw function below
    if(reticlePresent == 1){
    for(var cellNumber = 0; cellNumber < 320; cellNumber++){
        //draw function below
        if(cellArray[(3*cellNumber) + 2] != 0 && cellArray[(3*cellNumber) + 2] != 13){
                gameCanvas.getContext("2d").drawImage(cellReticle, cellArray[3*cellNumber],cellArray[(3*cellNumber) + 1]);
        }
    }
    }
//draw other leukocytes here if desired
    }




    //draw info box
    switch(infoBoxPresent){
        case 0:
        break;

        case 1://click twice to begin game
            gameCanvas.getContext("2d").drawImage(infoBox1, 0, 0);
        break;

        case 2://level 1 info box
            gameCanvas.getContext("2d").drawImage(infoBox2, 0, 0);
        break;

        case 3://level 2 info box
            gameCanvas.getContext("2d").drawImage(infoBox6, 0, 0);
        break;

        case 4://level 3 info box
            gameCanvas.getContext("2d").drawImage(infoBox6, 0, 0);
        break;

        case 5://level 4 info box
            gameCanvas.getContext("2d").drawImage(infoBox6, 0, 0);
        break;
        
        case 6://level 5+ info box
            gameCanvas.getContext("2d").drawImage(infoBox6, 0, 0);
        break;

        case 7://u ded info box
            gameCanvas.getContext("2d").drawImage(infoBox7, 0, 0);
        break;
    }

    //mouse click event handler
    if(mouse_clicked == 1){
        mouse_clicked = 0; //reset debounce variable

        if(mouseX >= 148 && mouseX <= 275 && mouseY < 50){
            if(reticlePresent == 0){
                reticlePresent = 1;
            }else{
                reticlePresent = 0;
            }
        }

        switch(infoBoxPresent){
            case 0:
            break;

            case 1: //if showing "click twice to begin game" (the mouse was clicked twice if we got here)
                infoBoxPresent = 2; //set up level 1 info box
            break;
        
            case 2://if showing intro card for level 1
                infoBoxPresent = 0;
                setupLevel1();
                currentLevel = 1;
            break;

            case 3://if showing intro card for level 2
                infoBoxPresent = 0;
                setupLevel2();
                currentLevel = 2;
            break;

            case 4://if showing intro card for level 3
                infoBoxPresent = 0;
                setupLevel3();
                currentLevel = 3;
            break;

            case 5://if showing intro card for level 4
                infoBoxPresent = 0;
                setupLevel4();
                currentLevel = 4;
            break;

            case 6://if showing intro card for level >= 5
                infoBoxPresent = 0;
                setupLevel5plus();
                currentLevel++;
            break;

            case 7://if showing death screen
            break;
        }
        //find number of healthy cells
        var healthyCells = 0;
        for(var i=0;i<320;i++){
            if(cellArray[3*i + 2] == 0){
                healthyCells++;
            }
        }
        //if <100 healthy cells, player loses.
        if(healthyCells < 100){
            infoBoxPresent = 7;
        }
        //if all cells are healthy, level is cleared
        if(healthyCells == 320){
            if(currentLevel == 1){
                infoBoxPresent = 3;
            }
            if(currentLevel == 2){
                infoBoxPresent = 4;
            }
            if(currentLevel == 3){
                infoBoxPresent = 5;
            }
            if((currentLevel == 4)){
                infoBoxPresent = 6;
                reticlePresent = 1;
            }
            if(currentLevel >= 5){
                infoBoxPresent = 6;
            }
        }

 
    var clickedLeukocyte = 0;//set to 1 if a leukocyte is clicked
        for(var i=0;i<30;i++){
            if((mouseX > leukocyteArray[(6*i)+0] + 15)&&
                (mouseX < leukocyteArray[(6*i)+0] + 45)&&
                (mouseY > leukocyteArray[(6*i)+1])&&
                (mouseY < leukocyteArray[(6*i)+1] + 30)){//hitbox detect leukocyte
                for(var clear=0;clear<30;clear++){//clear all reticles
                    if(leukocyteArray[(6*clear)+5]==15){
                    leukocyteArray[(6*clear)+5] = 0;
                    }
                }
                leukocyteArray[(6*i)+5]=15;//redraw reticle on clicked leukocyte
                clickedLeukocyte = 1;     //leukocyte clicked flag
            }
        }
        if(clickedLeukocyte == 0){//if you didn't click a leukocyte, you're setting a target for the currently
                                   //selected one. (does nothing if none are selected)
            for(var i=0;i<30;i++){
                if(leukocyteArray[(6*i)+5] == 15){
                    leukocyteArray[(6*i)+3] = mouseX - 30;//set target x location
                    leukocyteArray[(6*i)+4] = mouseY - 15;//set target y location
                }
            }
        }
    }





/*
setTimeout(40);
requestAnimationFrame(updateScreen);
*/
}, 1000 / 12);
}
//the "1000 / 12" above sets the frame rate to 12FPS.
//substitute 1000/60 for 60FPS.
updateScreen(); //<-I don't personally understand why updateScreen is needed here, but it is...

        
        </script>
    </head>
    <body>
        <canvas id="gameCanvas" onclick="setupGame();" width="800" height="550"></canvas>
    </body>
</html>
